Summary
The most relevant properties of hypercycles were previously studied mainly from a theoretical point of view. We have developed a Monte Carlo method simulating hypercyclic organization to obtain information about the dynamics of this prebiotic organization. Nucleation, growth, and selective properties have been tested and the results obtained are in good agreement with those of the theoretical predictions. The influence of hypercyclic organization of the “error threshold” has also been studied. As a consequence of the emergence of a hypercycle, the value of this threshold decreases. The amount of this decrease depends on the population size. Moreover, for some interval of quality factor values, either the hypercycle organization or an error catastrophe can be produced, depending on the initial conditions. The influence of these phenomena on both the dynamic behavior and evolutionary advantages of the hypercycle, as well as their decisive roles on genome size, are discussed.
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García-Tejedor, A., Castaño, A.R., Morán, F. et al. Studies on evolutionary and selective properties of hypercycles using a Monte Carlo method. J Mol Evol 26, 294–300 (1987). https://doi.org/10.1007/BF02101147
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DOI: https://doi.org/10.1007/BF02101147